EdgeDAM: Real-time Object Tracking for Mobile Devices
Syed Muhammad Raza, Syed Murtaza Hussain Abidi, Khawar Islam, Muhammad Ibrahim, Ajmal Saeed Mian

TL;DR
EdgeDAM is a lightweight, real-time object tracking framework optimized for mobile devices, combining detection-guided strategies and distractor-aware memory to enhance robustness under occlusion and fast motion.
Contribution
It introduces a novel distractor-aware memory mechanism and adaptive switching strategies tailored for resource-constrained edge devices.
Findings
Achieves 88.2% accuracy on DiDi dataset.
Runs at 25 FPS on an iPhone 15.
Outperforms existing methods in robustness under occlusion.
Abstract
Single-object tracking (SOT) on edge devices is a critical computer vision task, requiring accurate and continuous target localization across video frames under occlusion, distractor interference, and fast motion. However, recent state-of-the-art distractor-aware memory mechanisms are largely built on segmentation-based trackers and rely on mask prediction and attention-driven memory updates, which introduce substantial computational overhead and limit real-time deployment on resource-constrained hardware; meanwhile, lightweight trackers sustain high throughput but are prone to drift when visually similar distractors appear. To address these challenges, we propose EdgeDAM, a lightweight detection-guided tracking framework that reformulates distractor-aware memory for bounding-box tracking under strict edge constraints. EdgeDAM introduces two key strategies: (1) Dual-Buffer…
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